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Running
on
Zero
Running
on
Zero
| import math | |
| import torch | |
| import torch.nn as nn | |
| from kornia.geometry.subpix import dsnt | |
| from kornia.utils.grid import create_meshgrid | |
| class FineMatching(nn.Module): | |
| """FineMatching with s2d paradigm""" | |
| def __init__(self): | |
| super().__init__() | |
| def forward(self, feat_f0, feat_f1, data): | |
| """ | |
| Args: | |
| feat0 (torch.Tensor): [M, WW, C] | |
| feat1 (torch.Tensor): [M, WW, C] | |
| data (dict) | |
| Update: | |
| data (dict):{ | |
| 'expec_f' (torch.Tensor): [M, 3], | |
| 'mkpts0_f' (torch.Tensor): [M, 2], | |
| 'mkpts1_f' (torch.Tensor): [M, 2]} | |
| """ | |
| M, WW, C = feat_f0.shape | |
| W = int(math.sqrt(WW)) | |
| scale = data['hw0_i'][0] / data['hw0_f'][0] | |
| self.M, self.W, self.WW, self.C, self.scale = M, W, WW, C, scale | |
| # corner case: if no coarse matches found | |
| if M == 0: | |
| assert self.training == False, "M is always >0, when training, see coarse_matching.py" | |
| # logger.warning('No matches found in coarse-level.') | |
| data.update({ | |
| 'expec_f': torch.empty(0, 3, device=feat_f0.device), | |
| 'mkpts0_f': data['mkpts0_c'], | |
| 'mkpts1_f': data['mkpts1_c'], | |
| }) | |
| return | |
| feat_f0_picked = feat_f0_picked = feat_f0[:, WW//2, :] | |
| sim_matrix = torch.einsum('mc,mrc->mr', feat_f0_picked, feat_f1) | |
| softmax_temp = 1. / C**.5 | |
| heatmap = torch.softmax(softmax_temp * sim_matrix, dim=1).view(-1, W, W) | |
| # compute coordinates from heatmap | |
| coords_normalized = dsnt.spatial_expectation2d(heatmap[None], True)[0] # [M, 2] | |
| grid_normalized = create_meshgrid(W, W, True, heatmap.device).reshape(1, -1, 2) # [1, WW, 2] | |
| # compute std over <x, y> | |
| var = torch.sum(grid_normalized**2 * heatmap.view(-1, WW, 1), dim=1) - coords_normalized**2 # [M, 2] | |
| std = torch.sum(torch.sqrt(torch.clamp(var, min=1e-10)), -1) # [M] clamp needed for numerical stability | |
| # for fine-level supervision | |
| data.update({'expec_f': torch.cat([coords_normalized, std.unsqueeze(1)], -1)}) | |
| # compute absolute kpt coords | |
| self.get_fine_match(coords_normalized, data) | |
| def get_fine_match(self, coords_normed, data): | |
| W, WW, C, scale = self.W, self.WW, self.C, self.scale | |
| # mkpts0_f and mkpts1_f | |
| mkpts0_f = data['mkpts0_c'] | |
| scale1 = scale * data['scale1'][data['b_ids']] if 'scale0' in data else scale | |
| mkpts1_f = data['mkpts1_c'] + (coords_normed * (W // 2) * scale1)[:len(data['mconf'])] | |
| data.update({ | |
| "mkpts0_f": mkpts0_f, | |
| "mkpts1_f": mkpts1_f | |
| }) | |